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I have a multi-index dataframe in pandas, where index is on ID and timestamp. I want to be able to compute a time-series rolling sum of each ID but I cant seem to figure out how to do it without loops.

content = io.BytesIO("""\
IDs    timestamp     value
0      2010-10-30     1
0      2010-11-30     2
0      2011-11-30     3
1      2000-01-01     300
1      2007-01-01     33
1      2010-01-01     400
2      2000-01-01     11""")
df = pd.read_table(content, header=0, sep='\s+', parse_dates=[1])
df.set_index(['IDs', 'timestamp'], inplace=True)
pd.stats.moments.rolling_sum(df,window=2

And the output for this is

                value
IDs timestamp
0   2010-10-30    NaN
    2010-11-30      3
    2011-11-30      5
1   2000-01-01    303
    2007-01-01    333
    2010-01-01    433
2   2000-01-01    411

Notice the overlap between IDs 0 and 1 and 1 and 2 at the edges (I dont want that, messes up my calculations) . One possible way to get around this is to using groupby on IDs and then loop through that groupby and then apply a rolling_sum

I am sure there is a function to help me do this without using loops.

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1 Answer 1

up vote 2 down vote accepted

Group first, then roll the sum (also rolling_sum is available in the top-level namespace)

In [18]: df.groupby(level='IDs').apply(lambda x: pd.rolling_sum(x,2))
Out[18]: 
                value
IDs timestamp        
0   2010-10-30    NaN
    2010-11-30      3
    2011-11-30      5
1   2000-01-01    NaN
    2007-01-01    333
    2010-01-01    433
2   2000-01-01    NaN
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that works !!!! –  silencer Oct 4 '13 at 18:32
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